模糊引导下分类器集合的动态选择

E. Santos, R. Sabourin, P. Maupin
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引用次数: 19

摘要

动态分类器选择传统上侧重于选择最准确的分类器来预测特定测试模式的类别。在本文中,我们提出了一种新的动态选择方法,从整体中选择最自信的分类器集合来标记测试样本。这样的置信水平是通过计算每个测试样本上集合的模糊度来测量的。我们从理论和实验上证明,从一组高精度集成中选择其成员之间歧义最小的分类器集成,可以提高分类的置信度,从而提高泛化性能。将该方法与静态选择和DCS-LA方法进行了实验比较,结果表明,当具有高精度集合时,该方法优于DCS-LA和静态选择策略。
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Ambiguity-guided dynamic selection of ensemble of classifiers
Dynamic classifier selection has traditionally focused on selecting the most accurate classifier to predict the class of a particular test pattern. In this paper we propose a new dynamic selection method to select, from a population of ensembles, the most confident ensemble of classifiers to label the test sample. Such a level of confidence is measured by calculating the ambiguity of the ensemble on each test sample. We show theoretically and experimentally that choosing the ensemble of classifiers, from a population of high accurate ensembles, with lowest ambiguity among its members leads to increase the level of confidence of classification, consequently, increasing the generalization performance. Experimental results conducted to compare the proposed method to static selection and DCS-LA, demonstrate that our method outperforms both DCS-LA and static selection strategies when a population of high accurate ensembles is available.
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